Current Status and Applications for Hydraulic Pump Fault Diagnosis: A Review
Abstract
:1. Introduction
2. Fault Analysis of Hydraulic Pump
3. Failure Diagnosis Method
- (1)
- Fault diagnosis based on a single signal;
- (2)
- Fault diagnosis based on multi-signal;
- (3)
- Other diagnostic methods.
3.1. Fault Diagnosis Based on Single Signal
3.1.1. Fault Diagnosis Based on Vibration Signal
- (1)
- Method based on signal processing
- (2)
- Methods based on artificial intelligence
- ➀
- Artificial intelligence method based on neural network
- ➁
- Artificial intelligence method based on a support vector machine
- ➂
- Artificial intelligence method based on a limit learning machine
- ➃
- Artificial intelligence method based on fuzzy theory
3.1.2. Fault Diagnosis Based on Other Signals
- Index I: enhance fault characteristics;
- Index II: optimization of fault diagnosis algorithm;
- Index III: adapt to strong noise environment;
- Index IV: high diagnostic accuracy.
3.2. Fault Diagnosis Based on Multiple Signals
- (1)
- Method based on signal processing
- (2)
- Methods based on artificial intelligence
- ➀
- Artificial intelligence method based on neural network
- ➁
- Classifier based approach
- ➂
- Methods based on Transfer Learning
3.3. Other Fault Diagnosis Methods
3.4. Centrifugal Pump Fault Diagnosis Method
3.5. Fault Diagnosis Block Diagram
4. Fault Prediction and Health Management
4.1. Fault Prediction
4.2. Prediction of Remaining Useful Life
- ➀
- Data-driven approach
- ➁
- Model-driven methods
4.3. Health Status Detection
5. Analysis of the Summary Paper
5.1. Statistical Analysis
5.2. Discussion on Future Development
- (1)
- Because of the weak signal features in the early stage of fault, it is difficult to extract fault features, so fault feature extraction is still a direction that needs further exploration. Because of the powerful function of the deep learning method, fault feature extraction based on the deep learning method will be an important research direction.
- (2)
- Although multi-data signals contain more information, the efficient information fusion methods for multi-data signals are still insufficient, so more efficient information fusion methods are also the direction to be further explored.
- (3)
- From the statistical analysis of the review papers, it can be concluded that the diagnosis method of artificial intelligence will become mainstream. However, each intelligent method also has defects, and the combination of multiple intelligent methods can be used to fill the defects, such as reverse neural networks combined with multilayer perceptrons.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
AOPF | Adaptive-Order Particle Filter |
AR | Autoregressive |
BE | Bispectrum Entropy |
BI-LSTM | Bi-Directional Long-Short Term Memory |
BT-SVM | Binary Tree Support Vector Machine |
CEEMD | Complementary Ensemble Empirical Mode Decomposition |
CEEMDAN | Complete Ensemble Empirical Mode Decomposition with Adaptive Noise |
CMBSE | Composite Multi-Scale Basic Scale Entropy |
CNC | Cosine Neighboring Coefficients |
CNN | Convolutional Neural Network |
CPRBF-NN | Radial Basis Function Network In Conjunction With Chaos Theory |
CWT | Continuous Wavelet Transform |
DBN | Deep Belief Network |
DCAE | Deep Convolutional Autoencoder |
DCS | Discrete Cosine Transform–Composite Spectrum |
DCT | Discrete Cosine Transform |
DLDR | Double Linear Damage Rule |
DT | Decision Trees |
EEMD | Ensemble Empirical Mode Decomposition |
ELM | Extreme Learning Machine |
EM | Expectation Maximization |
EMD | Empirical Mode Decomposition |
EMMD | Extremum Field Mean Mode Decomposition |
ESN | Modified Echo State Networks |
EWT | Empirical Wavelet Transform |
FA | Factor Analysis |
FCM | Fuzzy C-Means |
FE | Fuzzy Entropy |
FEMD | Fast Empirical Mode Decomposition |
FFT | Fast Fourier Transform |
FIS | Fuzzy Inference System |
FMEA | Failure Mode And Effects Analysis |
FMECA | Modes, Effects, And Criticality Analysis |
GA | Genetic Algorithm |
HHT | Hilbert–Huang Transform |
HMM | Hidden Markov Model |
HT | Hilbert Transform |
IAMMA | Improved Adaptive Multiscale Morphology Analysis |
Ir-PCA | Informative ratio-Principal component analysis |
IEWT | Improved Empirical Wavelet Transform |
IG | Inverse Gaussian |
ILCD | Improved Local Characteristic-Scale Decomposition |
ITD | Intrinsic Time-Scale Decomposition |
JITL | Just In Time Learning |
KPCA | Kernel Principal Component Analysis |
KS | Kolmogorov-Smirnov |
K-VNN | K-Vector Nearest Neighbor |
LCD | Local Characteristic-Scale Decomposition |
LLTSA | Liner Local Tangent Space Alignment |
LMD | Local Mean Decomposition |
LR | Logistic Regression |
LTSA | Local Tangent Space Alignment |
MAAKR | Modified Auto-Associative Kernel Regression |
MCPF | Monotonicity-Constrained Particle Filtering |
MCS | Monte Carlo Simulation |
MD | Mahalanobis Distance |
MEEMD | Modified Ensemble Empirical Mode Decomposition |
MF | Multi-Fractal Spectrum |
MFAM | Multi-Signal Fusion Adversarial Model |
MFCC | Mel-Frequency Cepstral Coefficient |
MHAPE | Modified Hierarchical Amplitude-Aware Permutation Entropy |
MLE | Maximum Likelihood Estimation |
MLP | Multilayer Perceptron |
MMPE | Mean Of Multi-Scale Permutation Entropy |
MPE | Multi-Scale Permutation Entropy |
MTS | Mahalanobis–Taguchi System |
NCNN | Normalized Convolutional Neural Network |
NE | Norm Entropy |
NN | Neural Network |
PARD | Pruning Algorithm Based Random Degree |
PCA | Principal Component Analysis |
PCC | Pearson Correlation Coefficient |
PHM | Prognostics And Health Management |
PNN | Probabilistic Neural Network |
PSD | Power Spectral Density |
PSE | Power Spectral Entropy |
PSO | Particle Swarm Optimization |
QPSO | Quantum Particle Swarm Optimization |
RBF | Radial Basis Function |
RBM | Boltzmann Machine |
RE | Relative Entropy |
RFC | The Random Forest Classifier |
RMS | Root Mean Square |
RNS | Real-Valued Negative Selection |
RSDD | Resonance-Based Sparse Signal Decomposition |
RUL | Remaining Useful Life |
SAE | Stacked Autoencoders |
SEOS | Smoothed Energy Operation Separation |
SIE | Spatial Information Entropy |
SMOTE | Synthetic Minority Over-Sampling Technique |
SOM-NN | Self-Organizing Mapping Neural Network |
SOMP | Stagewise Orthogonal Matching Pursuit |
SPIP | Symbolic Perceptually Important Point |
SS-SVM | Sphere-Structured Support Vector Machines |
STFT | Short Time Fourier Transform |
SVD | Singular Value Decomposition |
SVM | Support Vector Machine |
SVR | Support Vector Regression |
T-DSNE | T-Distributed Stochastic Neighbor Embedding |
TFE | Time-Frequency Entropy |
T-SNE | T-Distributed Stochastic Neighbor Embedding |
VCR | Variance Contribution Rate |
VMD | Variation Mode Decomposition |
WA | Wavelet Analysis |
WCRA | Wavelet Coefficient Residual Analysis |
WKELM | Wavelet Kernel Extreme Learning Machine |
WNC | Wavelet Neighboring Coefficients |
WOA | Whale Optimization Algorithm |
WOA-KELM | Whale Optimization Algorithm Kernel Extreme Learning Machine |
WP | Wavelet Packet |
WPA | Wavelet Packet Analysis |
WPD | Wavelet Packet Decomposition |
WPNE | Wavelet Packet Norm Entropy |
WPT | Wavelet Packet Transform |
WT | Wavelet Transform |
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Wear Type | Form Factor |
---|---|
Friction wear | The surface of the parts after manufacturing is always uneven when carefully observed with a magnifying glass. After the operation wear of the hydraulic pump, the metal particles fall off from the surface of the parts, and the uneven parts on the surface of the parts are relatively smoothed. If friction is continued later, deep marks or small-size wear will be produced. This kind of wear is normal natural friction wear. |
Abrasive wear | According to the analysis of oil pollutants used in hydraulic pumps, more than 20% of the pollution particles are silica and metal oxides. These abrasive particles are the most serious components of pump parts wear. They are sandwiched between the surfaces of moving pair parts. When moving, they act as grinding sand, resulting in severe abrasive wear. |
Pit wear | This is a kind of fatigue damage to hydraulic components. Under the action of alternating load, due to periodic compression and deformation, residual stress and metal fatigue will occur, resulting in tiny cracks on the parts, which will gradually cause small pieces of parts to peel off. |
Corrosive wear | The surface of the hydraulic pump components is subjected to corrosive substances such as acids and moisture in the oil, and the metal surface is gradually damaged. |
Year | Faults Studied | Signal Used | Method Used | Index Evaluation | Reference | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Fault I | Fault II | Fault III | Fault IV | Index I | Index II | Index III | Index IV | ||||
2005 | √ | Vibration | WT+MRA (multi-resolution analysis) | √ | √ | [50] | |||||
2006 | √ | √ | Vibration | fuzzy logic principle+Spectrum analysis | √ | [84] | |||||
2008 | √ | Vibration | RNS+SVM | √ | [75] | ||||||
2008 | √ | √ | Vibration | WA+PCA | √ | √ | [69] | ||||
2008 | √ | √ | Vibration | PSD+DT+FIS | √ | √ | [86] | ||||
2009 | √ | √ | Vibration | WPD | √ | [41] | |||||
2011 | √ | √ | Vibration | PCA | √ | [52] | |||||
2011 | √ | √ | Vibration | CPRBF | √ | √ | [67] | ||||
2011 | √ | √ | Sound | KPCA | √ | [87] | |||||
2012 | √ | √ | Vibration | WP+MTS | √ | [53] | |||||
2012 | √ | √ | Vibration | SSSVN | √ | √ | [77] | ||||
2013 | √ | √ | Vibration | EMD+NN | √ | √ | [56] | ||||
2013 | √ | √ | Vibration | Spectrum analysis + rough set theory | √ | [85] | |||||
2014 | √ | √ | Vibration | PARD-BP | √ | [70] | |||||
2014 | √ | √ | Vibration | WPT+SOM | √ | √ | [59] | ||||
2015 | √ | √ | Vibration | WPT+SVD+SVM | √ | √ | [72] | ||||
2015 | √ | √ | Vibration | RELU-Dropout+SAE | √ | [68] | |||||
2015 | √ | √ | Vibration | LMD+Softmax | √ | √ | [58] | ||||
2015 | √ | Vibration | SIE+FCM | √ | [83] | ||||||
2015 | √ | √ | Vibration | SOMP+compressive sensing theory | √ | [54] | |||||
2015 | √ | Vibration | LMD+IAMMA | √ | √ | [48] | |||||
2015 | √ | √ | Vibration | EMD+CEEMD+STFT+TFE+SVM | √ | √ | [76] | ||||
2015 | √ | √ | Vibration | DCT+CNC+HHT | √ | √ | [38] | ||||
2016 | √ | √ | Vibration | ITD+Softmax | √ | [57] | |||||
2016 | √ | √ | √ | Vibration | 7-layer CNN | √ | [63] | ||||
2016 | √ | √ | Vibration | HFHLCSD+BSS+DCTS+DCTHSE | √ | √ | [39] | ||||
2016 | √ | √ | Vibration | WNC+CNN+HHT | √ | √ | [42] | ||||
2016 | √ | Vibration | ILCD+MF+BT-SVM | √ | √ | [78] | |||||
2017 | √ | √ | Vibration | sensitivity analysis+PNN | √ | √ | [69] | ||||
2017 | √ | Vibration | EEMD+GA+SVR | √ | √ | [73] | |||||
2018 | √ | Vibration | LCD+DCS | √ | [51] | ||||||
2018 | √ | Vibration | SPIP+HMM | √ | [43] | ||||||
2018 | √ | √ | Vibration | WPA+FE+LLTSA+SVM | √ | √ | [74] | ||||
2018 | √ | √ | Vibration | WPT+LTSA+EMD+LMD+ELM | √ | [82] | |||||
2019 | √ | Vibration | EWT+VCR | √ | √ | [35] | |||||
2019 | √ | Vibration | EMMD+Teager | √ | [46] | ||||||
2019 | √ | Vibration | FFT | √ | [71] | ||||||
2019 | √ | √ | Sound | MFCC+ELM | √ | √ | [88] | ||||
2019 | √ | √ | Vibration | IEWT | √ | [47] | |||||
2019 | √ | √ | Vibration | MCS+RE | √ | [49] | |||||
2020 | √ | √ | Vibration | EWT+PCA+ELM | √ | √ | [80] | ||||
2020 | √ | √ | Vibration | CWT+CNN | √ | √ | [60] | ||||
2020 | √ | Vibration | EWT+VCR+HT | √ | [45] | ||||||
2020 | √ | Vibration | PSE | √ | [37] | ||||||
2020 | √ | √ | Pressure | FEMD+RE | √ | √ | [91] | ||||
2020 | √ | √ | Vibration | CWT+CNN+T-DSNE | √ | √ | [66] | ||||
2021 | √ | Vibration | MEEMD+AR+WKELM | √ | √ | [79] | |||||
2021 | √ | √ | Vibration | CEEMDAN+CMBSE+t-SNE+WOA-KELM | √ | √ | √ | [81] | |||
2021 | √ | √ | Vibration | WPA+AlexNet-CNN | √ | [61] | |||||
2021 | √ | √ | Vibration | PSO-Improve-CNN | √ | √ | [64] | ||||
2021 | √ | Angular velocity | IAS+NST | √ | [92] | ||||||
2021 | √ | √ | Vibration | EEMD+Pearson | √ | √ | [36] | ||||
2021 | √ | √ | Vibration | RMS | √ | [55] | |||||
2022 | √ | √ | Vibration | NCNN+Bayes+BP | √ | [62] | |||||
2022 | √ | √ | Vibration | WT+Bayes+CNN | √ | [65] | |||||
2022 | √ | √ | Pressure | CWT+Bayes+CNN | √ | [90] | |||||
2022 | √ | √ | Sound | CNN+PSO | √ | [89] |
Year | Faults Studied | Signal Used | Index Evaluation | Reference | ||||||
---|---|---|---|---|---|---|---|---|---|---|
Fault I | Fault II | Fault III | Fault IV | Index I | Index II | Index III | Index IV | |||
2002 | √ | Information fusion technology | √ | [98] | ||||||
2010 | √ | √ | Hierarchical clustering analysis | √ | √ | [99] | ||||
2011 | √ | √ | Improved DS evidence theory and spatiotemporal information fusion | √ | √ | [100] | ||||
2012 | √ | √ | D-S+DMM | √ | √ | [111] | ||||
2013 | √ | √ | Clustering diagnosis algorithm based on ARPD | √ | √ | [101] | ||||
2013 | √ | √ | MFAM+Transfer learning | √ | [113] | |||||
2014 | √ | √ | PNN | √ | [105] | |||||
2014 | √ | RBF-NN | √ | √ | [104] | |||||
2015 | √ | √ | EEMD+Bayes+NN | √ | √ | [93] | ||||
2017 | √ | √ | DS evidence theory | √ | [94] | |||||
2017 | √ | √ | EMD+PNN | √ | √ | [107] | ||||
2019 | √ | √ | Inverse gaussian model + Bayes optimization | √ | √ | [97] | ||||
2020 | √ | √ | PCA | √ | [95] | |||||
2020 | √ | √ | STFT+FFT | √ | [96] | |||||
2020 | √ | √ | SVM+Multilayer Perceptron(MLP) | √ | [109] | |||||
2020 | √ | Stochastic forest neural network | √ | [110] | ||||||
2020 | √ | √ | Singular value decomposition + transfer learning | √ | √ | [112] | ||||
2020 | √ | Reliability analysis + Bayesian network | √ | [102] | ||||||
2021 | √ | CNN based on improved adaptive learning rate | √ | √ | [103] | |||||
2021 | √ | √ | KPCA+PNN | √ | [108] | |||||
2021 | √ | √ | CNN+EWT+WISE-PaaS | √ | √ | [114] | ||||
2022 | √ | √ | Wavelet packet analysis+PNN | √ | √ | [106] |
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Yang, Y.; Ding, L.; Xiao, J.; Fang, G.; Li, J. Current Status and Applications for Hydraulic Pump Fault Diagnosis: A Review. Sensors 2022, 22, 9714. https://doi.org/10.3390/s22249714
Yang Y, Ding L, Xiao J, Fang G, Li J. Current Status and Applications for Hydraulic Pump Fault Diagnosis: A Review. Sensors. 2022; 22(24):9714. https://doi.org/10.3390/s22249714
Chicago/Turabian StyleYang, Yanfang, Lei Ding, Jinhua Xiao, Guinan Fang, and Jia Li. 2022. "Current Status and Applications for Hydraulic Pump Fault Diagnosis: A Review" Sensors 22, no. 24: 9714. https://doi.org/10.3390/s22249714
APA StyleYang, Y., Ding, L., Xiao, J., Fang, G., & Li, J. (2022). Current Status and Applications for Hydraulic Pump Fault Diagnosis: A Review. Sensors, 22(24), 9714. https://doi.org/10.3390/s22249714